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Tag Archives: Containers

Seattle May 6-8, 2019

Watch live as technology leaders from across industries share the latest breakthroughs and trends, and explore innovative ways to create solutions. After the keynotes, select Microsoft Build sessions will stream live—dive deep into what’s new and what’s next for developer tools and tech.

Discover and experience new ways to build, modernize, and migrate your applications. Get hands-on experiences with tools like Azure Kubernetes Service (AKS) that can help you dynamically scale your application infrastructure.

Join Microsoft for hands-on learning to discover how tools like Visual Studio live share can help you collaborate with your peers instantly.

Come learn how to build an end-to-end continuous delivery pipeline that is fast and secure with Azure DevOps technologies. Spend less time maintaining your toolset and more time focusing on customer value.

Understand how frameworks like Xamarin and .NET can help you reach customers on all platforms. Learn how to use the same languages, APIs, and data structures across all mobile development platforms.

Learn how mixed reality helps you bring your work and data to life when you need it, and where you need it. Start building secure, collaborative mixed reality solutions today using intelligent services, best-in-class hardware, and cross-platform tools.

Learn to connect your devices to the cloud using flexible IoT solutions that integrate with your existing infrastructure. Collect untapped data and form valuable insights that help you create better customer experiences and generate new streams of revenue.

Multi-cluster view from Azure Monitor

Azure Monitor provides a multi-cluster view showing the health status of all monitored AKS clusters deployed across resource groups in your subscriptions. It shows AKS clusters discovered that are not monitored by the solution. Immediately you can understand cluster health, and from here you can drill down to the node and controller performance page, or navigate to see performance charts for the cluster. For AKS clusters discovered and identified as unmonitored, you can enable monitoring for that cluster at any time.

Container Live Logs provides a real-time view into your Azure Kubernetes Service (AKS) container logs (stdout/stderr) without having to run kubectl commands. When you select this option, new pane appears below the containers performance data table on the Containers view, and it shows live logging generated by the container engine to further assist in troubleshooting issues in real time.
Live logs supports three different methods to control access to the logs:

But what is coming in 2019 ?

Rocking with Azure in the Classroom !

I will continue every day sharing knowledge with the Community and continue my Free work on MVPbuzz Friday for Education to get Azure Cloud Technology in the Classroom for Teachers and Students.
The trend I see for 2019 is more Infrastructure and Security by Code with Microsoft Azure DevOps
and of course you have to be in Control with Microsoft Azure Monitor

I will write a blogpost in January 2019 about Microsoft Azure Hub-Spoke model by Enterprise Design 4 of 4: Optimize your Azure Workload.

More Items in 2019 to come :

Microsoft Azure Security Center for Hybrid IT

Windows Server 2019 in combination with Azure Cloud Services.

More on Containers in the Cloud

Azure Stack and ASDK

Integration with Azure Cloud.

API Management

Azure DevOps Pipelines and Collabration

Azure IoT for Smart Cities and Buildings combined with AI Technology

2019 will be a Great year again with New Microsoft Technologies and Features for your business.

Azure Monitor for containers is a feature designed to monitor the performance of container workloads deployed to either Azure Container Instances or managed Kubernetes clusters hosted on Azure Kubernetes Service (AKS). Monitoring your containers is critical, especially when you’re running a production cluster, at scale, with multiple applications.
Azure Monitor for containers gives you performance visibility by collecting memory and processor metrics from controllers, nodes, and containers that are available in Kubernetes through the Metrics API. Container logs are also collected. After you enable monitoring from Kubernetes clusters, these metrics and logs are automatically collected for you through a containerized version of the Log Analytics agent for Linux and stored in your Log Analytics workspace.

What I really like is that you now can see the Container Live logs from the Azure portal and see what is going on in the background of a Container 🙂

Activate Azure Kubernetes Container Live Logs

Here you see the Container Live logs

This feature provides a real-time view into your Azure Kubernetes Service (AKS) container logs (stdout/stderr) without having to run kubectl commands. When you select this option, new pane appears below the containers performance data table on the Containers view, and it shows live logging generated by the container engine to further assist in troubleshooting issues in real time.
Live logs supports three different methods to control access to the logs:

You even can search in the Container Live Logs for Troubleshooting and history :

Search on ssh

Azure Monitor for containers uses a containerized version of the Log Analytics agent for Linux. After initial deployment, there are routine or optional tasks you may need to perform during its lifecycle.
Because of this agent you can work with Log Analytics in Azure Monitor :

When you have your production workload running on Azure Kubernetes Clusters, It’s important to monitor to keep you in Control of the solution in Microsoft Azure and watch for improvements like performance for the business. With Container Live logs you can see what is going on in the Containers when you have issues and that’s great for troubleshooting to get your problem solved fast. Get your workload into Azure Containers and make your Azure DevOps CI/CD Pipelines in the Cloud.

With container support, customers can use Azure’s intelligent Cognitive Services capabilities, wherever the data resides. This means customers can perform facial recognition, OCR, or text analytics operations without sending their content to the cloud. Their intelligent apps are portable and scale with greater consistency whether they run on the edge or in Azure.

Get started with these Azure Cognitive Services Containers

Building solutions with machine learning often requires a data scientist. Azure Cognitive Services enable organizations to take advantage of AI with developers, without requiring a data scientist. We do this by taking the machine learning models and the pipelines and the infrastructure needed to build a model and packaging it up into a Cognitive Service for vision, speech, search, text processing, language understanding, and more. This makes it possible for anyone who can write a program, to now use machine learning to improve an application. However, many enterprises still face challenges building large-scale AI systems. Today Microsoft announced container support for Cognitive Services, making it significantly easier for developers to build ML-driven solutions.

Start with Installing and running Containers

Request access to the private container registry

You must first complete and submit the Cognitive Services Vision Containers Request form to request access to the Face container. The form requests information about you, your company, and the user scenario for which you’ll use the container. Once submitted, the Azure Cognitive Services team reviews the form to ensure that you meet the criteria for access to the private container registry.

Important !

You must use an email address associated with either a Microsoft Account (MSA) or Azure Active Directory (Azure AD) account in the form. If your request is approved, you then receive an email with instructions describing how to obtain your credentials and access the private container registry.

The Face container uses a common configuration framework, so that you can easily configure and manage storage, logging and telemetry, and security settings for your containers.
Configuration settings
Configuration settings in the Face container are hierarchical, and all containers use a shared hierarchy, based on the following top-level structure:

Microsoft Service Fabric Mesh

Azure Service Fabric Mesh is a fully managed service that enables developers to deploy microservices applications without managing virtual machines, storage, or networking. Applications hosted on Service Fabric Mesh run and scale without you worrying about the infrastructure powering it. Service Fabric Mesh consists of clusters of thousands of machines. All cluster operations are hidden from the developer. Simply upload your code and specify resources you need, availability requirements, and resource limits. Service Fabric Mesh automatically allocates the infrastructure and handles infrastructure failures, making sure your applications are highly available. You only need to care about the health and responsiveness of your application-not the infrastructure.

With Service Fabric Mesh you can:

“Lift and shift” existing applications into containers to modernize and run your current applications at scale.

Build and deploy new microservices applications at scale in Azure. Integrate with other Azure services or existing applications running in containers. Each microservice is part of a secure, network isolated application with resource governance policies defined for CPU cores, memory, disk space, and more.

Integrate with and extend existing applications without making changes to those applications. Use your own virtual network to connect existing application to the new application.

Build high-availability into your application architecture by co-locating your compute, storage, networking, and data resources within a zone and replicating in other zones. Azure services that support Availability Zones fall into two categories:

To achieve comprehensive business continuity on Azure, build your application architecture using the combination of Availability Zones with Azure region pairs. You can synchronously replicate your applications and data using Availability Zones within an Azure region for high-availability and asynchronously replicate across Azure regions for disaster recovery protection.

Twitter AMA on Service Fabric Mesh :

The Service Fabric team will be hosting an Ask Me Anything (AMA) (more like “ask us anything”!) session for Service Fabric Mesh on Twitter on Tuesday, October 30thfrom 9am to 10:30am PST. Tweet to@servicefabricor @AzureSupport using #SFMeshAMA with your questions on Mesh and Service Fabric. More information here

Azure Pipelines is a cloud service that you can use to automatically build and test your code project and make it available to other users. It works with just about any language or project type.
Pipelines combines both Continuous Integration (CI) and Continuous Deployment (CD) to constantly and consistently test and build your code and ship it to any target.

Microsoft made it really easy to make your first Azure DevOps Pipeline in the Cloud.
Here you find a step-by-step guide to make your first Azure pipeline :

When you already made your Cloud application, you can choose option Bring your Own Code 😉

But in this step-by-step guide, I choose for a HTML5 Azure Web App template which is available in Azure.

Static Azure Website => Next.

When you create your Azure DevOps project you can see the Flow steps for Creation.

For the Service of the Web App, there are two options in this deployment template :

Web App for Containers

Web App as a Service.

Azure Web Apps enables you to build and host web applications in the programming language of your choice without managing infrastructure. It offers auto-scaling and high availability, supports both Windows and Linux, and enables automated deployments from GitHub, Azure DevOps, or any Git repo

Web App for Containers provides built-in Docker images on Linux with support for specific versions, such as PHP 7.0 and Node.js 4.5. Web App for Containers uses the Docker container technology to host both built-in images and custom images as a platform as a service. In this tutorial, you learn how to build a custom Docker image and deploy it to Web App for Containers. This pattern is useful when the built-in images don’t include your language of choice, or when your application requires a specific configuration that isn’t provided within the built-in images.

The last step needs information about :

Organization: for the site name.

Projectname

Subscription ID

Web App Name

Azure Location.

And then click on Done

Deployment overview.

Your Azure DevOps Pipeline is Running as easy like that 🙂

But most important your Azure Web App is running.

Running in your Container in Azure Cloud Services.

Azure DevOps Container Web App Pipeline is running.

From here you can build your Project and Share it with your Developer Team.
More information you can find on Azure DevOps Docs

Here you see some snapshots on the latest Releases of Azure DevOps release features when I made this blogpost :

When you want to keep up-to-date on Microsoft Azure DevOps, here are some links :